Sparse Bayesian Learning Motsch-Tadmor Model

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Sparse Bayesian Learning Motsch-Tadmor Model
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AFBytes Brief

A sparse Bayesian learning method is developed for recovering interaction kernels within the Motsch-Tadmor collective behavior model. Convergence guarantees are provided under suitable assumptions.

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The result remains confined to theoretical mathematics without impact on U.S. wages or energy costs.

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This abstract mathematical result has no measurable effect on family budgets or local prices.

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Academic institutions may catalog the result under standard mathematical review processes.

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The work does not engage constitutional rights or privacy principles.

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